|本期目录/Table of Contents|

[1]张飞飞,周涛△,陆惠玲,等.基于贝叶斯粗糙集的肺部肿瘤CT图像高维特征选择算法*[J].生物医学工程研究,2018,04:404-409.
 ZHANG Feifei,ZHOU Tao,LU Huiling,et al.An algorithm for high dimension feature selection of lung tumor ?CT image based on Bayesian rough set[J].Journal of Biomedical Engineering Research,2018,04:404-409.
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基于贝叶斯粗糙集的肺部肿瘤CT图像高维特征选择算法*(PDF)

《生物医学工程研究》[ISSN:1006-6977/CN:61-1281/TN]

期数:
2018年04期
页码:
404-409
栏目:
出版日期:
2018-12-25

文章信息/Info

Title:
An algorithm for high dimension feature selection of lung tumor ?CT image based on Bayesian rough set
文章编号:
1672-6278 (2018)04-0404-06
作者:
张飞飞1周涛123△陆惠玲2梁蒙蒙1杨健1
1.宁夏医科大学公共卫生与管理学院,银川 750000;2.宁夏医科大学理学院,银川 750000;3.宁夏智能信息与大数据处理重点实验室,银川 750021
Author(s):
ZHANG Feifei1ZHOU Tao 123 LU Huiling 2 LIANG Mengmeng 1 YANG Jian1
1.School of Public Health and Management, Ningxia Medical University, Yinchuan 750000,China;2.School of Science,Ningxia Medical University, Yinchuan 750000;3.Ningxia Province key Laboratory of Intelligent Information and Big Data Processing,Yinchuan 750021
关键词:
贝叶斯粗糙集变精度粗糙集遗传算法支持向量机特征选择特征降维
Keywords:
Bayesian rough set Variable precision rough set Genetic algorithm Support vector machine Feature selection Feature reduction
分类号:
R318; TP391.7
DOI:
10.19529/j.cnki.1672-6278.2018.04.06
文献标识码:
A
摘要:
针对变精度粗糙集在高维特征选择过程中对分类错误率β的过分依赖问题,结合遗传算法提出一种基于贝叶斯粗糙集的肺部肿瘤CT图像高维特征选择算法。首先提取3000例肺部肿瘤CT图像ROI区域的104维特征构造决策信息表;然后从全局相对增益函数的角度分析属性重要度,结合属性约简长度、基因编码权值函数三者的加权和构造一个适应度函数框架,提出以此为启发式信息的属性约简算法;最后利用支持向量机进行分类识别。实验结果表明,本研究算法摆脱了阈值人工设置的束缚,并且在很大程度上提高整体性能,对肺部肿瘤计算机辅助诊断具有积极的推广价值。
Abstract:
Aiming at the over-dependence problem of variable precision rough set in the high dimensional feature selection process, to propose an algorithm for high dimension feature selection of lung tumor CT image based on Bayesian rough set combined with genetic algorithm. Firstly,the 104 dimension features were extracted to construct a decision information table based on 3000 CT ROI regions of lung tumor images.Then,a general fitness function framework was constructed based on weighted sum of attribute reduction length, gene coding weight function and the attribute importance degree of global relative gain function. At the same time, an attribute reduction algorithm was proposed based on these heuristic information.Finally, support vector machine was used to classify the reduction subset and multiple indicators were used to evaluate the model.Experimental results show that the algorithm breaks away from the restriction of threshold artificial settings compared with variable precision rough set, and improves the global performance of the model to a large extent,which has a positive influence for the computer aided diagnosis of lung tumors.

参考文献/References

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备注/Memo

备注/Memo:
(收稿日期:2018-05-21) 国家自然科学基金资助项目(61561040);宁夏高教项目(NGY2016084)。△通信作者Email:zhoutaonxmu@126.com
更新日期/Last Update: 2019-01-29